Implementation and optimization of a new Super-Resolution technique in PET imaging

Guoping Chang, T. Pan, John W. Clark, O. Mawlawi
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引用次数: 3

Abstract

Super-Resolution (SR) techniques are used in PET imaging to generate a high-resolution image by combining multiple low-resolution images that have been acquired from different points of view (POV). In this paper, we propose a new implementation of the SR technique (NSR) whereby the required multiple low-resolution images are generated by shifting the reconstruction pixel grid during the image-reconstruction process rather than being acquired from different POV. In order to reduce the overall processing time and memory storage, we further propose two optimized SR implementations (NSR-O1 & NSR-O2) that require only a subset of the low resolution images (two sides & diagonal of the image matrix, respectively). The objective of this paper is to test the performances of the NSR, NSR-O1 & NSR-O2 implementations and compare them to the original SR implementation (OSR) using experimental studies. Materials and Methods A point source and a NEMA/IEC phantom study were conducted for this investigation. In each study, an OSR image (256×256) was generated by combining 16 (4×4) low-resolution images (64×64) that were reconstructed from 16 different data sets acquired from different POV. Furthermore, another set of 16 low-resolution images were reconstructed from the same (first) data set using different reconstruction POV to generate a NSR image (256×256). In addition, two different subsets of the second 16-image set (two sides & diagonal of the image matrix, respectively) were combined to generate the NSR-O1 and NSR-O2 images respectively. The 4 SR images (OSR, NSR, NSR-O1 & NSR-O2) were compared with one another with respect to contrast, resolution, noise and SNR. For reference purposes a comparison with a native reconstruction (NR) image using a high resolution pixel grid (256×256) was also performed. Results The point source study showed that the proposed NSR, NSR-O1 & NSR-O2 images exhibited identical contrast and resolution as the OSR image (0.5% and 1.2% difference on average, respectively). Comparisons between the SR and NR images for the point source study showed that the NR image exhibited an average 30% and 8% lower contrast and resolution respectively. The NEMA/IEC phantom study showed that the three NSR images exhibited similar noise structures as one another but different from the OSR image. The SNR of the three NSR images were similar (2.1% difference) but on average 22% lower than the OSR image largely due to an increase in background noise, while the NR image had an average of 14.5% lower SNR versus the three NSR images. Conclusion The NSR implementation can potentially replace the OSR approach in current PET scanners while maintaining similar contrast and resolution, but at a relatively lower SNR. This NSR implementation can be further optimized as NSR-O1 & NSR-O2 implementations by using only a subset of low-resolution images which can achieve similar image contrast, resolution and SNR but require less processing time and memory storage. A major advantage of the NSR versus OSR implementation is its shorter overall scan duration which results in an increase in scanner throughput and a reduction of patient motion.
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一种新的超分辨率PET成像技术的实现与优化
超分辨率(SR)技术用于PET成像,通过将从不同视点(POV)获得的多幅低分辨率图像组合在一起,生成高分辨率图像。在本文中,我们提出了一种新的SR技术(NSR)实现方法,即在图像重建过程中通过移动重建像素网格来生成所需的多幅低分辨率图像,而不是从不同的POV中获取。为了减少整体处理时间和内存存储,我们进一步提出了两种优化的SR实现(NSR-O1和NSR-O2),它们只需要低分辨率图像的子集(分别为图像矩阵的两面和对角线)。本文的目的是测试NSR、NSR- o1和NSR- o2实现的性能,并通过实验研究将它们与原始的SR实现(OSR)进行比较。材料和方法本研究采用点源和NEMA/IEC模体研究。在每一项研究中,将从不同POV获取的16个不同数据集重构的16幅(4×4)低分辨率图像(64×64)合并生成OSR图像(256×256)。此外,从相同(第一)数据集使用不同的重构POV重构另一组16张低分辨率图像,生成NSR图像(256×256)。此外,将第二个16张图像集的两个不同子集(分别为图像矩阵的两条边和对角线)组合在一起,分别生成NSR-O1和NSR-O2图像。将4幅SR图像(OSR、NSR、NSR- 01和NSR- 02)在对比度、分辨率、噪声和信噪比等方面进行比较。为了供参考,还与使用高分辨率像素网格(256×256)的自然重建(NR)图像进行了比较。结果点源研究表明,所提出的NSR、NSR- o1和NSR- o2图像与OSR图像的对比度和分辨率相同(平均差异分别为0.5%和1.2%)。在点源研究中,SR和NR图像的对比表明,NR图像的对比度和分辨率分别平均降低30%和8%。NEMA/IEC模体研究表明,三幅NSR图像具有相似的噪声结构,但与OSR图像不同。三幅NSR图像的信噪比相似(相差2.1%),但平均比OSR图像低22%,这主要是由于背景噪声的增加,而NR图像的信噪比平均比三幅NSR图像低14.5%。结论在现有PET扫描仪中,NSR的实现有可能取代OSR方法,同时保持相似的对比度和分辨率,但信噪比相对较低。这种NSR实现可以进一步优化为NSR- o1和NSR- o2实现,只使用低分辨率图像的子集,可以实现相似的图像对比度,分辨率和信噪比,但需要更少的处理时间和内存存储。与OSR相比,NSR实现的一个主要优势是其整体扫描持续时间更短,从而增加了扫描仪的吞吐量并减少了患者的运动。
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